Minimum Regret Search for Single- and Multi-Task Optimization
Machine Learning
2016-05-25 v3 Information Theory
Machine Learning
Robotics
math.IT
Abstract
We propose minimum regret search (MRS), a novel acquisition function for Bayesian optimization. MRS bears similarities with information-theoretic approaches such as entropy search (ES). However, while ES aims in each query at maximizing the information gain with respect to the global maximum, MRS aims at minimizing the expected simple regret of its ultimate recommendation for the optimum. While empirically ES and MRS perform similar in most of the cases, MRS produces fewer outliers with high simple regret than ES. We provide empirical results both for a synthetic single-task optimization problem as well as for a simulated multi-task robotic control problem.
Cite
@article{arxiv.1602.01064,
title = {Minimum Regret Search for Single- and Multi-Task Optimization},
author = {Jan Hendrik Metzen},
journal= {arXiv preprint arXiv:1602.01064},
year = {2016}
}
Comments
Final version for ICML 2016